Addressing delayed case reporting in infectious disease forecast modeling
Lauren J Beesley, Dave Osthus, Sara Y Del Valle

TL;DR
This paper introduces a framework to improve infectious disease forecasts by correcting for delays in case reporting, leveraging historical or external data, and demonstrating improved accuracy in dengue and influenza data.
Contribution
It proposes new methods for adjusting disease forecasts to account for reporting delays, using historical and external data sources, with validation on real datasets.
Findings
Forecast accuracy improves with delay correction methods
Methods are robust to some assumption violations
Using external data enhances correction effectiveness
Abstract
Infectious disease forecasting is of great interest to the public health community and policymakers, since forecasts can provide insight into disease dynamics in the near future and inform interventions. Due to delays in case reporting, however, forecasting models may often underestimate the current and future disease burden. In this paper, we propose a general framework for addressing reporting delay in disease forecasting efforts with the goal of improving forecasts. We propose strategies for leveraging either historical data on case reporting or external internet-based data to estimate the amount of reporting error. We then describe several approaches for adapting general forecasting pipelines to account for under- or over-reporting of cases. We apply these methods to address reporting delay in data on dengue fever cases in Puerto Rico from 1990 to 2009 and to reports of…
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Taxonomy
TopicsData-Driven Disease Surveillance · COVID-19 epidemiological studies · Influenza Virus Research Studies
